改进的作假检测:采用李克特项目反应过程树模型

Faking Detection Improved: Adopting a Likert Item Response Process Tree Model

ORGANIZATIONAL RESEARCH METHODS · 2021
被引 29
人大 A-ABS 4

中文导读

研究通过修改项目反应理论树模型(三过程模型),在两项实验中识别作假行为,发现作假者更倾向于极端回答,基于极端回答的百分比截断平均分类准确率达85%。

Abstract

With the increasing popularity of noncognitive inventories in personnel selection, organizations typically wish to be able to tell when a job applicant purposefully manufactures a favorable impression. Past faking research has primarily focused on how to reduce faking via instrument design, warnings, and statistical corrections for faking. This article took a new approach by examining the effects of faking (experimentally manipulated and contextually driven) on response processes. We modified a recently introduced item response theory tree modeling procedure, the three-process model, to identify faking in two studies. Study 1 examined self-reported vocational interest assessment responses using an induced faking experimental design. Study 2 examined self-reported personality assessment responses when some people were in a high-stakes situation (i.e., selection). Across the two studies, individuals instructed or expected to fake were found to engage in more extreme responding. By identifying the underlying differences between fakers and honest respondents, the new approach improves our understanding of faking. Percentage cutoffs based on extreme responding produced a faker classification precision of 85% on average.

心理学人员选拔社会心理学应用心理学人工智能